I have a statement trying to implement but confused on how to do so. This is my issue:

- I have an image where I have set some pixels of interest (region of interest) to the value
`1`

. So, we can say that we now have a set with the following values`1s`

where each`1`

here represents a particular location in the image.

C = [1 1 1 1 1 1 1 1 1 1];

For example, say `img`

for simplicity here is the matrix `x`

as follows:

```
x = [2 3 5; 5 4 5; 6 4 3; 6 5 4; 6 54 3; 6 5 3];
```

`x`

will have a degree of membership `y`

based on which we set some values to `1`

. To clarify, for each pixel for which `y`

= `1`

we set that pixel to `1`

. So, let's say `y`

is:

```
y = [0 1 0; 0 1 1; 1 1 0; 0 0 1; 0 0 1; 1 1 1];
```

So, `C`

contains 10 `1s`

. For instance the first `1`

represents the location `x(1,2)`

and so forth...

Now, I want to check the

`4-neighbourhoods`

of the pixels in`C`

but that at the same time not in`C`

. That is, on the surroundings.Now, for those pixels that belong to the surroundings and are four neighbors of

`C`

I want to select that pixel`p`

that**minimizes the distance**between`x`

and`C`

.

Is it clear now? Do you know how I can go around it?

Thanks.

mightmean the distance between the pixel values, i.e. how different the image looks. Perhaps you could give more information and say whether you think my guess would make sense for your problem. – jazzbassrob Feb 22 '13 at 10:23`size`

of`img`

and`p`

? – Dennis Jaheruddin Feb 22 '13 at 10:23updated– Simplicity Feb 22 '13 at 10:33